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A Hierarchical Model with Pseudoinverse Learning Algorithm Optimazation for Pulsar Candidate Selection

机译:伪逆学习算法优化的脉冲星候选选择层次模型

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摘要

Pulsars search has always been one of the most concerned problem in the field of astronomy. Nowadays, with the development of astronomical instruments and observation technology, the amount of data is getting bigger and bigger. Radio pulsar surveys have generated and will generate vast amounts of data. To handle big data, developing new technologies and frameworks to efficiently and accurately analyze these data become increasing urgent. The number of positive and negative samples in pulsar candidate data set is very unbalanced, if we only use these a few positive samples to train a deep neural network (DNN), the trained DNN is prone because of the problem of overfitting and will affect the generalization ability. Motivated by the mixtures of experts network architecture, we proposed a hierarchical model for pulsar candidate selection which assembles a set of trained base classifiers. Moreover, training a neural network always takes a lot of time because of using gradient descent (GD) based algorithm. In this work, we utilize the pseudoinverse learning algorithm instead of GD based algorithm to train proposed model. With the designed network architecture and adopted training algorithm, our model has the advantages not only with high steady-state precision but also good generalization performance.
机译:脉冲星搜索一直是天文学领域最关注的问题之一。如今,随着天文仪器和观测技术的发展,数据量越来越大。无线电脉冲星勘测已经产生并将产生大量数据。为了处理大数据,开发新技术和框架以高效,准确地分析这些数据变得越来越紧迫。脉冲星候选数据集中正样本和负样本的数量非常不平衡,如果仅使用这几个正样本来训练深度神经网络(DNN),则由于过度拟合的问题,训练后的DNN很容易出现,并且会影响泛化能力。受专家网络架构混合的影响,我们提出了脉冲星候选者选择的分层模型,该模型组装了一组训练有素的基础分类器。此外,由于使用基于梯度下降(GD)的算法,训练神经网络总是要花费大量时间。在这项工作中,我们利用伪逆学习算法而不是基于GD的算法来训练提出的模型。通过设计的网络架构和采用的训练算法,我们的模型不仅具有稳态精度高的优点,而且具有良好的泛化性能。

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